动态系统的模型约束切线斜率学习方法

IF 1.1 4区 工程技术 Q4 MECHANICS
Hai V. Nguyen, T. Bui-Thanh
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引用次数: 0

摘要

在实际工程和科学应用中,特别是在数字孪生应用中,大规模复杂动力系统的实时精确解是控制、优化、不确定性量化和决策的关键。本文提出了一种模型约束切线斜率学习(mcTangent)方法。mcTangent的核心是几种理想策略的协同作用:(i)切线斜率学习,以利用神经网络的速度和时间精确的线形方法;(ii)一种模型约束的方法,用潜在的控制方程对神经网络切线斜率进行编码;(iii)循序渐进的学习策略,以促进长期的稳定性和准确性;(iv)数据随机化方法,隐式地增强神经网络切线斜率的平滑性及其对二阶导数切线斜率的真实可能性,以进一步提高mcTangent解决方案的稳定性和准确性。提供了严格的结果来分析和证明所提出的方法。文中给出了输运方程、粘性Burgers方程和Navier-Stokes方程的数值结果,研究并证明了所提出的mcTangent学习方法的鲁棒性和长期精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Model-Constrained Tangent Slope Learning Approach for Dynamical Systems
Real-time accurate solutions of large-scale complex dynamical systems are in critical need for control, optimisation, uncertainty quantification, and decision-making in practical engineering and science applications, especially digital twin applications. This paper contributes in this direction a model-constrained tangent slope learning (mcTangent) approach. At the heart of mcTangent is the synergy of several desirable strategies: (i) a tangent slope learning to take advantage of the neural network speed and the time-accurate nature of the method of lines; (ii) a model-constrained approach to encode the neural network tangent slope with the underlying governing equations; (iii) sequential learning strategies to promote long-time stability and accuracy; and (iv) data randomisation approach to implicitly enforce the smoothness of the neural network tangent slope and its likeliness to the truth tangent slope up second order derivatives in order to further enhance the stability and accuracy of mcTangent solutions. Rigorous results are provided to analyse and justify the proposed approach. Several numerical results for transport equation, viscous Burgers equation, and Navier–Stokes equation are presented to study and demonstrate the robustness and long-time accuracy of the proposed mcTangent learning approach.
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来源期刊
CiteScore
2.70
自引率
7.70%
发文量
25
审稿时长
3 months
期刊介绍: The International Journal of Computational Fluid Dynamics publishes innovative CFD research, both fundamental and applied, with applications in a wide variety of fields. The Journal emphasizes accurate predictive tools for 3D flow analysis and design, and those promoting a deeper understanding of the physics of 3D fluid motion. Relevant and innovative practical and industrial 3D applications, as well as those of an interdisciplinary nature, are encouraged.
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